YOLO-LFPD:用于带材表面缺陷检测的轻量级方法。

IF 3.4 3区 医学 Q1 ENGINEERING, MULTIDISCIPLINARY
Jianbo Lu, Mingrui Zhu, Kaixian Qin, Xiaoya Ma
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引用次数: 0

摘要

带钢表面缺陷识别研究在工业生产中具有重要的研究意义。针对缺陷特征提取、检测速度慢、数据集不足等问题,在 YOLOv5 的基础上进行了改进,提出了 YOLO-LFPD(轻量级细颗粒检测)模型。通过引入 RepVGG(Re-param VGG)模块,增强了模型的鲁棒性,提高了模型的表达能力。使用 FasterNet 代替主干网络,既保证了推理的准确性,又加快了推理速度,使模型更适合实时监测。采用具有 OTA 损失函数的 GA 遗传算法--剪枝算法,在更好地学习带钢缺陷特征信息的同时,进一步缩小了模型规模,从而提高了模型的泛化能力和准确性。实验结果表明,引入 RepVGG 模块并使用 FasterNet 可以很好地改善模型性能,与近年来的网络模型相比,参数数量减少了 48%,GFLOPs 数量减少了 13%,推理时间是原来的 77%,精度达到最佳。在 NEU-DET 数据集上的实验结果表明,YOLO-LFPD 的精度提高了 3%,达到 81.2%,优于其他模型,为轻量化带钢表面缺陷检测场景和应用部署提供了新的思路和参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
YOLO-LFPD: A Lightweight Method for Strip Surface Defect Detection.

Strip steel surface defect recognition research has important research significance in industrial production. Aiming at the problems of defect feature extraction, slow detection speed, and insufficient datasets, YOLOv5 is improved on the basis of YOLOv5, and the YOLO-LFPD (lightweight fine particle detection) model is proposed. By introducing the RepVGG (Re-param VGG) module, the robustness of the model is enhanced, and the expressive ability of the model is improved. FasterNet is used to replace the backbone network, which ensures accuracy and accelerates the inference speed, making the model more suitable for real-time monitoring. The use of pruning, a GA genetic algorithm with OTA loss function, further reduces the model size while better learning the strip steel defect feature information, thus improving the generalisation ability and accuracy of the model. The experimental results show that the introduction of the RepVGG module and the use of FasterNet can well improve the model performance, with a reduction of 48% in the number of parameters, a reduction of 13% in the number of GFLOPs, an inference time of 77% of the original, and an optimal accuracy compared with the network models in recent years. The experimental results on the NEU-DET dataset show that the accuracy of YOLO-LFPD is improved by 3% to 81.2%, which is better than other models, and provides new ideas and references for the lightweight strip steel surface defect detection scenarios and application deployment.

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来源期刊
Biomimetics
Biomimetics Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
3.50
自引率
11.10%
发文量
189
审稿时长
11 weeks
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